
51 - 200 employees
Founded 2006
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đ May 1
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51 - 200 employees
Founded 2006
Castillians is a company whose publicly available text is inaccessible without JavaScript; the provided content only shows a message asking the user to enable JavaScript. No information about the company's product, services, industry, or target customers can be determined from this text alone.
⢠Design and implement AI Bench (AI Workbench) environments for experimentation and prototyping ⢠Build standardized, reproducible AI development environments (notebooks, containers, IDEs) ⢠Enable rapid prototyping using AI frameworks such as PyTorch, TensorFlow, and NVIDIA NeMo ⢠Integrate AI benches with enterprise data platforms (Cloudera, Spark, Hadoop) ⢠Configure and optimize GPU-enabled environments for training and experimentation ⢠Support distributed AI workloads for research and early-stage model development ⢠Provide self-service AI benches for data scientists and ML engineers ⢠Implement environment versioning, dependency management, and reproducibility standards ⢠Monitor bench usage, performance, and resource utilization ⢠Ensure security, access control, and isolation across AI benches ⢠Collaborate with AI Platform, Data, and MLOps teams to align bench capabilities.
⢠5+ years of experience in AI Workbench, ML Infrastructure, or Platform Engineering roles ⢠Strong hands-on experience with PyTorch-based experimentation environments ⢠Experience supporting AI research and data science teams ⢠Working knowledge of big data platforms (Cloudera, Spark, Hadoop) ⢠Experience with GPU-accelerated environments (NVIDIA CUDA, multi-GPU setups) ⢠Solid experience with Docker, Kubernetes, and Linux ⢠Proficiency in Python for scripting, automation, and AI workflows ⢠Familiarity with notebook and IDE tooling (Jupyter, VS Code, remote development) ⢠Exposure to distributed training frameworks is a plus ⢠Understanding of MLOps concepts is advantageous ⢠Strong problem-solving and user-centric mindset ⢠Excellent communication and collaboration skills ⢠Fluent in English (written and verbal).
⢠Access to CX guidance and market insights through our professional network.
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